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首页> 外文期刊>South African statistical journal >LINEAR REGRESSION WITH RANDOMLY DOUBLE-TRUNCATED DATA
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LINEAR REGRESSION WITH RANDOMLY DOUBLE-TRUNCATED DATA

机译:具有随机双截数据的线性回归

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摘要

Non-parametric estimation for a linear regression model under random double-truncation is investigated, i.e. the variables are observed if and only if the dependent variable lies in a random interval. The method requires only weak distribution assumptions to ensure identifiabil-ity, but does not require any specific distribution family for any variable, neither for the truncation variables nor for the error term. By using non-parametric estimators of several distribution functions, consistent and asymptotically normal estimators are established. A simulation study shows the tendency that the lower the probability of observation, the higher the mean squared error of the estimators, even for the same number of observations. Finally, the method is applied to a doubly truncated data set of German companies, where the age-at-insolvency is of interest.
机译:研究了随机双截断下线性回归模型的非参数估计,即,当且仅当因变量位于随机区间内时,才观察到变量。该方法仅需要弱分布假设即可确保可识别性,而对于截断变量和误差项均不需要任何变量的任何特定分布族。通过使用多个分布函数的非参数估计量,可以建立一致且渐近的正态估计量。仿真研究表明,即使对于相同数量的观察,观察概率越低,估计量的均方误差越高。最后,该方法应用于德国公司的双重截断数据集,其中破产年龄很重要。

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